Human-AI Interactions and Societal Pitfalls

September 19, 2023 Β· Declared Dead Β· πŸ› ACM Conference on Economics and Computation

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Authors Francisco Castro, Jian Gao, SΓ©bastien Martin arXiv ID 2309.10448 Category cs.AI: Artificial Intelligence Cross-listed cs.HC, econ.GN Citations 10 Venue ACM Conference on Economics and Computation Last Checked 4 months ago
Abstract
When working with generative artificial intelligence (AI), users may see productivity gains, but the AI-generated content may not match their preferences exactly. To study this effect, we introduce a Bayesian framework in which heterogeneous users choose how much information to share with the AI, facing a trade-off between output fidelity and communication cost. We show that the interplay between these individual-level decisions and AI training may lead to societal challenges. Outputs may become more homogenized, especially when the AI is trained on AI-generated content, potentially triggering a homogenization death spiral. And any AI bias may propagate to become societal bias. A solution to the homogenization and bias issues is to reduce human-AI interaction frictions and enable users to flexibly share information, leading to personalized outputs without sacrificing productivity.
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